For years, vibration analysis has been the industry standard for bearing fault diagnosis. However, due to the various advantages over vibration based techniques, the quantification of acoustic emission (AE) for bearing health diagnosis has been an area of interest for recent years. Additionally, most AE based methodologies to date utilize data mining technologies. Presented in this paper is a new approach, combining a heterodyne based frequency reduction technique, time synchronous resampling, and spectral averaging to process AE signals and compute condition indicators (CIs) for bearing fault diagnostics. First, the heterodyne based frequency reduction technique allows the AE signal frequency to be down shifted from several MHz to less than 50 kHz, which approaches that of vibration based methodologies. Next, the sampled AE signals are band pass filtered to retain the useful information related to the bearing defects. Last, a trigger signal is utilized to time synchronously resample the AE signals to allow the calculation of a spectral average and the extraction and evaluation of CIs for bearing fault diagnosis. The technique presented in this paper is validated using the AE signals of seeded fault steel bearings on a bearing test rig. Presented is an effective AE based approach validated to diagnose all four fault types: inner race, outer race, ball, and cage. Moreover, the effectiveness of the presented approach is established through the comparison of both AE and vibration data.
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December 2014
Research-Article
On the Use of Spectral Averaging of Acoustic Emission Signals for Bearing Fault Diagnostics
Brandon Van Hecke,
Brandon Van Hecke
Department of Mechanical and
Industrial Engineering,
e-mail: bvanhe2@uic.edu
Industrial Engineering,
University of Illinois at Chicago
,Chicago, IL 60607
e-mail: bvanhe2@uic.edu
Search for other works by this author on:
David He,
David He
1
Department of Mechanical and
Industrial Engineering,
e-mail: davidhe@uic.edu
Industrial Engineering,
University of Illinois at Chicago
,Chicago, IL 60607
e-mail: davidhe@uic.edu
1Corresponding author.
Search for other works by this author on:
Yongzhi Qu
Yongzhi Qu
Department of Mechanical and
Industrial Engineering,
e-mail: yqu5@uic.edu
Industrial Engineering,
University of Illinois at Chicago
,Chicago, IL 60607
e-mail: yqu5@uic.edu
Search for other works by this author on:
Brandon Van Hecke
Department of Mechanical and
Industrial Engineering,
e-mail: bvanhe2@uic.edu
Industrial Engineering,
University of Illinois at Chicago
,Chicago, IL 60607
e-mail: bvanhe2@uic.edu
David He
Department of Mechanical and
Industrial Engineering,
e-mail: davidhe@uic.edu
Industrial Engineering,
University of Illinois at Chicago
,Chicago, IL 60607
e-mail: davidhe@uic.edu
Yongzhi Qu
Department of Mechanical and
Industrial Engineering,
e-mail: yqu5@uic.edu
Industrial Engineering,
University of Illinois at Chicago
,Chicago, IL 60607
e-mail: yqu5@uic.edu
1Corresponding author.
Contributed by the Technical Committee on Vibration and Sound of ASME for publication in the JOURNAL OF VIBRATION AND ACOUSTICS. Manuscript received December 18, 2013; final manuscript received August 12, 2014; published online September 11, 2014. Assoc. Editor: Patrick S. Keogh.
J. Vib. Acoust. Dec 2014, 136(6): 061009 (13 pages)
Published Online: September 11, 2014
Article history
Received:
December 18, 2013
Revision Received:
August 12, 2014
Citation
Van Hecke, B., He, D., and Qu, Y. (September 11, 2014). "On the Use of Spectral Averaging of Acoustic Emission Signals for Bearing Fault Diagnostics." ASME. J. Vib. Acoust. December 2014; 136(6): 061009. https://doi.org/10.1115/1.4028322
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